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Reversible Computing

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Reversible Computing Quantum Computing s Practical Cousin Michael P. Frank University of Florida Departments of CISE and ECE mpf_at_cise.ufl.edu Simons Conference Lecture – PowerPoint PPT presentation

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Title: Reversible Computing


1
Reversible Computing
  • Quantum Computings Practical Cousin

Michael P. FrankUniversity of FloridaDepartments
of CISE and ECE mpf_at_cise.ufl.edu Simons
Conference LectureStony Brook, New YorkMay
28-31, 2003
2
Abstract
  • Mainstream quantum computing is very difficult,
    and its currently known applications are quite
    limited.
  • Focus is on maintaining coherence of global
    superpositions.
  • Reversible computing is much easier, and its
    long-term practical applications are almost
    completely general.
  • Its benefits are provable from fundamental
    physics.
  • Well-engineered reversible computers might yield
    general, 1,000 cost-efficiency benefits by
    2055.
  • We outline how this projection was obtained.
  • More attention should be paid to implementing
    self-contained, reversible, ballistic device
    mechanisms.
  • We give requirements, proof-of-concept examples.

3
Organization of Talk
  • Reversible Computing (RC) vs. Quantum Computing
    (QC)
  • Fundamental Physical Limits of Computing
  • Models and Mechanisms for RC
  • Nanocomputer Systems Engineering the
    Cost-Efficiency Benefits of RC
  • Conclusion RC is a good area to be in!

4
Part I
  • Reversible Computing versus Quantum Computing

5
QM, Decoherence Irreversibility
  • Everett (more recently) Zurek taught us why it
    is not inconsistent w. our observations to view
    quantum evolution as always being completely
    unitary in reality.
  • What about apparent wavefunction collapse,
    decoherence, and thermodynamic irreversibility
    (entropy generation)?
  • All can be viewed as just symptoms of our
    practical inability to keep track of the full
    quantum evolution, w. all correlations
    entanglements that get created between
    interacting subsystems.

(Also cf. Jaynes 57)
Presumed true underlying reality
Approximate model often used
SubsystemA
SubsystemB
SubsystemA
SubsystemB
U
U
Densitymatrices
?A
?B
Global pure state ?AB
6
Quantum Computing
  • Relies on coherent, global superposition states
  • Required for speedups of quantum algorithms, but
  • Cause difficulties in scaling physical
    implementations
  • Invokes externally-modulated Hamiltonian
  • Low total system energy dissipation is not
    necessarily guaranteed, if dissipation in control
    system is included
  • Known speedups for only a few problems so far
  • Cryptanalysis, quantum simulations, unstructured
    search, a small handful of others. Progress is
    hard
  • ? QC might not ever have very much impact on the
    majority of general-purpose computing.

7
Reversible Computing
  • Requires only an approximate, local coherence of
    pointer states, direct transitions between
    them
  • Ordinary signal-restoration plus classical error
    correction techniques suffice fewer scaling
    problems
  • Emphasis is on low entropy generation due to
    quantum evolution that is locally mostly coherent
  • Requires we also pay attention to dissipation in
    the timing system, integrate it into the system
    model.
  • Benefits nearly all general-purpose computing
  • Except fully-serial, or very loosely-coupled
    parallel, when the cost of free energy itself is
    also negligible.

8
Terminology / Requirements
Property of Computing Mechanism Approximate Meaning Required for Quantum Computing? Required for Reversible Computing?
(Treated As)Unitary Systems full invertible quantum evolution, w. all phase information, is modeled tracked Yes, device system evolution must be modeled as unitary, within threshold No, only reversible evolution of classical state variables must be tracked
Coherent Pure quantum statesdont decohere (for us) into statistical mixtures Yes, must maintain full global coherence, locally within threshold No, only maintain stability of local pointer statestransitions
Adiabatic No heat flow in/out of computational subsystem Yes, must be above a certain threshold Yes, as high as possible
Isentropic / Thermodynamically Reversible No new entropy generated by mechanism Yes, must be above a certain threshold Yes, as high as possible
Time-Independent Hamiltonian,Self-Controlled Closed system, evolves autonomously w/o external control No, transitions can be externally timed controlled Yes, if we care about energy dissipation in the driving system
Ballistic System evolves w. net forward momentum No, transitions can be externally driven Yes, if we care about performance
9
Part II
  • The Fundamental Physical Limits of Computing

10
Fundamental Physical Limits of Computing
ImpliedUniversal Facts
Affected Quantities in Information Processing
Thoroughly ConfirmedPhysical Theories
Speed-of-LightLimit
Communications Latency
Theory ofRelativity
Information Capacity
UncertaintyPrinciple
Information Bandwidth
Definitionof Energy
Memory Access Times
QuantumTheory
Reversibility
2nd Law ofThermodynamics
Processing Rate
Adiabatic Theorem
Energy Loss per Operation
Gravity
11
Physics as Computing (1 of 2)
Physical Quantity Computational Interpretation Computational Units
Entropy Physical information that is unknown (or incompressible) Information (log states), e.g., nat kB, bit kB ln 2
Action Number of (quantum) operationscarrying out motion interaction Operations or ops r-op ?, p-op h/2
Angular Momentum Number of operations taken per unit angle of rotation ops/angle(1 r-op/rad 2 p-ops/?)
Proper Time , Distance , Time Number of internal-update ops , spatial transition ops , total ops if trajectory is taken by a reference system (Planck-mass particle?) ops, ops, ops
Velocity Fraction of total ops of systemeffecting net spatial translation ops/ops dimensionless,max. value 100 (c)
12
Physics as Computing (2 of 2)
Physical Quantity Computational Interpretation Computational Units
Energy Rate of (quantum) computation,total ops time ops/time ops/ops dimensionless
Rest mass-energy Rate of internal ops ops/time dimensionless
Momentum Rate of spatial translation ops ops/time dimensionless
GeneralizedTemperature Update frequency, avg. rate of complete parallel update steps ops/time/info info-1
Heat Energy in subsystems whose information is entropy ops/time dimensionless
ThermalTemperature Generalized temperature of subsystems whose information is entropy ops/time/info info-1
13
Landauers 1961 Principle from basic quantum
theory
Before bit erasure
After bit erasure
Ndistinctstates



sN-1
s?N-1
0
0
2Ndistinctstates
Unitary(1-1)evolution
s'0
s?N
1
0
Ndistinctstates




s'N-1
s?2N-1
1
0
Increase in entropy S log 2 k ln 2. Energy
lost to heat ST kT ln 2
14
Part III
  • Reversible ComputingModels Mechanisms

15
Some Claims Against Reversible Computing Eventual Resolution of Claim
John von Neumann, 1949 Offhandedly remarks during a lecture that computing requires kT ln 2 dissipation per elementary act of decision (bit-operation). No proof provided. Twelve years later, Rolf Landauer of IBM tries valiantly to prove it, but succeeds only for logically irreversible operations.
Rolf Landauer, 1961 Proposes that the logically irreversible operations which necessarily cause dissipation are unavoidable. Landauers argument for unavoidability of logically irreversible operations was conclusively refuted by Bennetts 1973 paper.
Bennetts 1973 construction is criticized for using too much memory. Bennett devises a more space-efficient version of the algorithm in 1989.
Bennetts models criticized by various parties for depending on random Brownian motion, and not making steady forward progress. Fredkin and Toffoli at MIT, 1980, provide ballistic billiard ball model of reversible computing that makes steady progress.
Various parties note that Fredkins original classical-mechanical billiard-ball model is chaotically unstable. Zurek, 1984, shows that quantum models can avoid the chaotic instabilities. (Though there are workable classical ways to fix the problem also.)
Various parties propose that classical reversible logic principles wont work at the nanoscale, for unspecified or vaguely-stated reasons. Drexler, 1980s, designs various mechanical nanoscale reversible logics and carefully analyzes their energy dissipation.
Carver Mead, CalTech, 1980 Attempts to show that the kT bound is unavoidable in electronic devices, via a collection of counter-examples. No general proof provided. Later he asked Feynman about the issue in 1985 Feynman provided a quantum-mechanical model of reversible computing.
Various parties point out that Feynmans model only supports serial computation. Margolus at MIT, 1990, demonstrates a parallel quantum model of reversible computingbut only with 1 dimension of parallelism.
People question whether the various theoretical models can be validated with a working electronic implementation. Seitz and colleagues at CalTech, 1985, demonstrate working energy recovery circuits using adiabatic switching principles.
Seitz, 1985Has some working circuits, unsure if arbitrary logic is possible. Koller Athas, Hall, and Merkle (1992) separately devise general reversible combinational logics.
Koller Athas, 1992 Conjecture reversible sequential feedback logic impossible. Younis Knight _at_MIT do reversible sequential, pipelineable circuits in 1993-94.
Some computer architects wonder whether the constraint of reversible logic leads to unreasonable design convolutions. Vieri, Frank and coworkers at MIT, 1995-99, refute these qualms by demonstrating straightforward designs for fully-reversible, scalable gate arrays, microprocessors, and instruction sets.
Some computer science theorists suggest that the algorithmic overheads of reversible computing might outweigh their practical benefits. Frank, 1997-2003, publishes a variety of rigorous theoretical analysis refuting these claims for the most general classes of applications.
Various parties point out that high-quality power supplies for adiabatic circuits seem difficult to build electronically. Frank, 2000, suggests microscale/nanoscale electromechanical resonators for high-quality energy recovery with desired waveform shape and frequency.
Frank, 2002Briefly wonders if synchronization of parallel reversible computation in 3 dimensions (not covered by Margolus) might not be possible. Later that year, Frank devises a simple mechanical model showing that parallel reversible systems can indeed be synchronized locally in 3 dimensions.
16
Bistable Potential-Energy Wells
  • Consider any system having an adjustable,
    bistable potential energy surface (PES) in its
    configuration space.
  • The two stable states form a natural bit.
  • One state represents 0, the other 1.
  • Consider now the P.E. well havingtwo adjustable
    parameters
  • (1) Height of the potential energy
    barrierrelative to the well bottom
  • (2) Relative height of the left and rightstates
    in the well (bias)

0
1
(Landauer 61)
17
Possible Parameter Settings
  • We will distinguish six qualitatively different
    settings of the well parameters, as follows

BarrierHeight
Direction of Bias Force
18
One Mechanical Implementation
Stateknob
Rightwardbias
Barrierwedge
Leftwardbias
spring
spring
Barrier up
Barrier down
19
Possible Adiabatic Transitions
  • Catalog of all the possible transitions in these
    wells, adiabatic not...

(Ignoring superposition states.)
1states
1
1
1
leak
0
0states
0
leak
0
BarrierHeight
N
1
0
Direction of Bias Force
20
Ordinary Irreversible Logics
  • Principle of operation Lower a barrier, or not,
    based on input. Series/parallel combinations of
    barriers do logic.
    Major dissipation
    in at least one of the possible transitions.

1
Input changes, barrier lowered
0
  • Amplifies input signals.

Example Ordinary CMOS logics
Outputirreversiblychanged to 0
0
21
Ordinary Irreversible Memory
  • Lower a barrier, dissipating stored information.
    Apply an input bias. Raise the barrier to latch
    the new informationinto place. Remove
    inputbias.

Retractinput
1
1
Dissipationhere can bemade as low as kT ln 2
Retractinput
Barrierup
0
0
Barrier up
Input1
Input0
ExampleDRAM
N
1
0
22
Input-Bias Clocked-Barrier Logic
  • Cycle of operation
  • (1) Data input applies bias
  • Add forces to do logic
  • (2) Clock signal raises barrier
  • (3) Data input bias removed

Can amplify/restore input signalin the
barrier-raising step.
(3)
1
1
(4)
Can reset latch reversibly (4) given copy
ofcontents.
(3)
0
0
(2)
(4)
(4)
(2)
(4)
Examples AdiabaticQDCA, SCRL latch, Rod logic
latch, PQ logic,Buckled logic
(1)
(1)
N
1
0
(4)
(4)
23
Input-Barrier, Clocked-Bias Retractile
  • Barrier signal amplified.
  • Must reset output prior to input.
  • Combinational logic only!
  • Cycle of operation
  • Inputs raise or lower barriers
  • Do logic w. series/parallel barriers
  • Clock applies bias force which changes state, or
    not

0
0
0
(1) Input barrier height
ExamplesHalls logic,SCRL gates,Rod logic
interlocks
N
1
0
(2) Clocked force applied ?
24
Input-Barrier, Clocked-Bias Latching
  • Cycle of operation
  • Input conditionally lowers barrier
  • Do logic w. series/parallel barriers
  • Clock applies bias force conditional bit flip
  • Input removed, raising the barrier locking in
    the state-change
  • Clockbias canretract

1
(4)
(4)
0
0
0
(2)
(2)
(3)
(1)
Examples Mikes4-cycle adiabaticCMOS logic
(2)
(2)
N
1
0
25
Full Classical-Mechanical Model
  • The following components are sufficient for a
    complete, scalable, parallel, pipelinable,
    linear-time, stable, classical reversible
    computing system
  • (a) Ballistically rotating flywheel driving
    linear motion.
  • (b) Scalable mesh to synchronize local flywheel
    phases in 3-D.
  • (c) Sinusoidal to flat-topped waveform shape
    converter.
  • (d) Non-amplifying signal inverter (NOT gate).
  • (e) Non-amplifying OR/AND gate.
  • (f) Signal amplifier/latch.

Sleeve
(a)
(c)
(b)
(f)
(d)
Primary drawback Slow propagationspeed of
mechanical (phonon) signals.
(e)
cf. Drexler 92
26
A MEMS Supply Concept
  • Energy storedmechanically.
  • Variable couplingstrength ? customwave shape.
  • Can reduce lossesthrough balancing,filtering.
  • Issue How toadjust frequency?

27
MEMS/NEMS Resonators
  • State of the art of technology demonstrated in
    lab
  • Frequencies up to the 100s of MHz, even GHz
  • Qs gt10,000 in vacuum, several thousand even in
    air
  • Rapidly becoming technology of choicefor
    commercial RF filters, etc., in
    communicationsSoC (Systems-on-a-Chip) e.g. for
    cellphones.

28
Graphical Notation for Reversible Circuits
  • Based on analogy with earlier mechanical model
  • Source for a flat-topped resonant signal
  • Cycle length of n ticks
  • Rises from 0?1 during tick r
  • Falls from 1?0 during tick f
  • Signal path with 1 visualized as displacement
    along path in direction of arrow
  • Non-amplifying inverter
  • Non-amplifying OR

29
Graphical Notation, cont.
  • Interlock (Amplifier/Latch)
  • If gate knob is lowered (1) then a subsequent
    0?1 signal from the left will be passed through
    to the right, otherwise not.
  • Simplified electroid symbol (Hall, 92)

gate
30
2LAL 2-level Adiabatic Logic
(Implementable using ordinary CMOS transistors)
P
P
  • Use simplified T-gate symbol
  • Basic buffer element
  • cross-coupled T-gates
  • Only 4 timing signals,4 ticks per cycle
  • ?i rises during tick i
  • ?i falls during tick i2 mod 4

?
?1
Tick
in
0 1 2 3
?0
?1
out
?2
?0
?3
31
2LAL Cycle of Operation
Tick 0
Tick 1
Tick 2
Tick 3
?1?1
in?1
in?0
?1?0
out?1
in
?0?1
?0?0
?1?1
in0
out?0
out0
?0?1
?0?0
32
2LAL Shift Register Structure
  • 1-tick delay per logic stage
  • Logic pulse timing propagation

?1
?2
?3
?0
in
out
?0
?1
?2
?3
0 1 2 3 ...
0 1 2 3 ...
in
in
33
More complex logic functions
  • Non-inverting Boolean functions
  • For inverting functions, must use quad-rail logic
    encoding
  • To invert, justswap the rails!
  • Zero-transistorinverters.

?
?
A
B
A
A
B
A?B
AB
A 0
A 1
A0
A0
A1
A1
34
Reversible / Adiabatic Chips Designed _at_ MIT,
1996-1999
By the author and other then-students in the MIT
Reversible Computing group,under AI/LCS lab
members Tom Knight and Norm Margolus.
35
Part IV
  • Nanocomputer Systems Engineering Analyzing
    Optimizing the Benefits of Reversible Computing

36
Cost-EfficiencyThe Key Figure of Merit
  • Claim All practical engineering
    design-optimization can ultimately be reduced to
    maximization of generalized, system-level
    cost-efficiency.
  • Given appropriate models of cost .
  • Definition of the Cost-Efficiency of a
    process min/actual
  • Maximize by minimizing actual
  • Note this is valid even when min is unknown

37
Important Cost Categories in Computing
Focus of mosttraditionaltheory
aboutcomputationalcomplexity.
  • Hardware-Proportional Costs
  • Initial Manufacturing Cost
  • Time-Proportional Costs
  • Inconvenience to User Waiting for Result
  • (Hardware?Time)-Proportional Costs
  • Amortized Manufacturing Cost
  • Maintenance Operation Costs
  • Opportunity Costs
  • Energy-Proportional Costs
  • Adiabatic Losses
  • Non-adiabatic Losses From Bit Erasure
  • Note These may both vary independently of
    (HW?Time)!

These costsmust be included also in
practicaltheoreticalmodels ofnanocomputing!
38
Computer Modeling Areas
  1. Logic Devices
  2. Technology Scaling
  3. Interconnections
  4. Synchronization
  5. Processor Architecture
  6. Capacity Scaling
  1. Energy Transfer
  2. Programming
  3. Error Handling
  4. Performance
  5. Cost

An Optimal, Physically Realistic Model of
Compu-ting Must Accurately Address All these
Areas!
39
Important Factors Included in Our Model
  • Entropic cost of irreversibility
  • Algorithmic overheads of reversible logic
  • Adiabatic speed vs. energy-loss tradeoff
  • Optimized degree of reversibility
  • Limited quality factors of real devices
  • Communications latencies in parallel algorithms
  • Realistic heat flux constraints

40
Technology-Independent Model of Nanoscale Logic
Devices
  • Id Bits of internal logical state information
    per nano-device
  • Siop Entropy generated per irreversible
    nano-device operation
  • tic Time per device cycle (irreversible case)
  • Sd,t Entropy generated per device per unit
    time (standby rate, from leakage/decay)
  • Srop,f Entropy generated per reversible op per
    unit frequency
  • ?d Length (pitch) between neighboring
    nanodevices
  • SA,t Entropy flux per unit area per unit time

41
Reversible Emulation - Ben89
k 2n 3
k 3n 2
42
Technological Trend Assumptions
Entropy generatedper irreversible
bittransition, nats
Absolute thermodynamiclower limit!
Minimum pitch (separation between centers of
adjacent bit-devices), meters.
Nanometer pitch limit
Minimum time perirreversible bit-devicetransitio
n, secs.
Example quantum limit
Minimum cost perbit-device, US.
43
Fixed Technology Assumptions
  • Total cost of manufacture US1,000.00
  • User will pay this for a high-performance desktop
    CPU.
  • Expected lifetime of hardware 3 years
  • After which obsolescence sets in.
  • Total power limit 100 Watts
  • Any more would burn up your lap. Ouch!
  • Power flux limit 100 Watts per square centimeter
  • Approximate limit of air-cooling capabilities
  • Standby entropy generation rate 1,000
    nat/s/device
  • Arbitrarily chosen, but achievable

44
Cost-Efficiency Benefits
Scenario 1,000/3-years, 100-Watt conventional
computer, vs. reversible computers w. same
capacity.
100,000
1,000
Best-case reversible computing
Bit-operations per US dollar
Worst-case reversible computing
Conventional irreversible computing
All curves would ?0 if leakage not reduced.
45
Minimizing Entropy Generation in Field-Effect
Nano-devices
46
Lower Limit to Entropy Generation Per
Bit-Operation
  • Scaling withdevices quantumquality factor q.
  • The optimal redundancyfactor scales as
    1.1248(ln q)
  • The minimumentropy gener-ation scales as q
    -0.9039

47
Conclusions
  • Reversible Computing is related to, but much
    easier to accomplish than Quantum Computing.
  • The case for RCs long-term, general usefulness
    for future practical, real-world nanocomputer
    engineering is now fairly solid.
  • The world has been slow to catch on to the ideas
    of RC, but it has been short-sighted
  • RC will be the foundation for most 21st-century
    computer engineering.

48
To besubmittedtoScientificAmerican
  • With device sizes fast approaching atomic-scale
    limits, ballistic circuits that conserve
    information will offer the only possible way to
    keep improving energy efficiency and therefore
    speed for most computing applications.
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